ROSYAug 19, 2017

Robust Optimal Planning and Control of Non-Periodic Bipedal Locomotion with A Centroidal Momentum Model

arXiv:1708.06345v139 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of enabling robots to perform non-periodic, agile locomotion in varied and disturbed environments, representing an incremental advance in bipedal robotics.

The study tackled the problem of planning and controlling agile bipedal locomotion for robots by developing a method to robustly track non-periodic keyframe states using centroidal momentum dynamics, enabling robust dynamic locomotion over challenging terrains and under disturbances as demonstrated in simulations.

This study presents a theoretical method for planning and controlling agile bipedal locomotion based on robustly tracking a set of non-periodic keyframe states. Based on centroidal momentum dynamics, we formulate a hybrid phase-space planning and control method which includes the following key components: (i) a step transition solver that enables dynamically tracking non-periodic keyframe states over various types of terrains, (ii) a robust hybrid automaton to effectively formulate planning and control algorithms, (iii) a steering direction model to control the robot's heading, (iv) a phase-space metric to measure distance to the planned locomotion manifolds, and (v) a hybrid control method based on the previous distance metric to produce robust dynamic locomotion under external disturbances. Compared to other locomotion methodologies, we have a large focus on non-periodic gait generation and robustness metrics to deal with disturbances. Such focus enables the proposed control method to robustly track non-periodic keyframe states over various challenging terrains and under external disturbances as illustrated through several simulations.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes